@@ -54,7 +54,7 @@ Bazel and automatically downloads the correct Bazel version for TensorFlow. For
5454ease of use, add Bazelisk as the ` bazel ` executable in your ` PATH ` .
5555
5656If Bazelisk is not available, you can manually
57- [ install Bazel] ( https://docs. bazel.build/versions/master/ install.html ) . Make
57+ [ install Bazel] ( https://bazel.build/install ) . Make
5858sure to install a supported Bazel version: any version between
5959` _TF_MIN_BAZEL_VERSION ` and ` _TF_MAX_BAZEL_VERSION ` as specified in
6060` tensorflow/configure.py ` .
@@ -188,7 +188,7 @@ building.
188188
189189For compilation optimization flags, the default (` -march=native ` ) optimizes the
190190generated code for your machine's CPU type. However, if building TensorFlow for
191- a different CPU type, consider a more specific optimization flag. See the
191+ a different CPU type, consider a more specific optimization flag. Check the
192192[ GCC manual] ( https://gcc.gnu.org/onlinedocs/gcc-4.5.3/gcc/i386-and-x86_002d64-Options.html ) {:.external}
193193for examples.
194194
@@ -240,9 +240,10 @@ bazel build --config=v1 [--config=option] //tensorflow/tools/pip_package:build_p
240240
241241### Bazel build options
242242
243- See the Bazel [ command-line reference] ( https://docs.bazel.build/versions/master/command-line-reference.html )
243+ Refer to the Bazel
244+ [ command-line reference] ( https://bazel.build/reference/command-line-reference )
244245for
245- [ build options] ( https://docs. bazel.build/versions/master/ command-line-reference.html #build-options ) .
246+ [ build options] ( https://bazel.build/reference/ command-line-reference#build-options ) .
246247
247248Building TensorFlow from source can use a lot of RAM. If your system is
248249memory-constrained, limit Bazel's RAM usage with: ` --local_ram_resources=2048 ` .
@@ -293,17 +294,17 @@ Success: TensorFlow is now installed.
293294
294295TensorFlow's Docker development images are an easy way to set up an environment
295296to build Linux packages from source. These images already contain the source
296- code and dependencies required to build TensorFlow. See the TensorFlow
297- [ Docker guide] ( ./docker.md ) for installation and the
297+ code and dependencies required to build TensorFlow. Go to the TensorFlow
298+ [ Docker guide] ( ./docker.md ) for installation instructions and the
298299[ list of available image tags] ( https://hub.docker.com/r/tensorflow/tensorflow/tags/ ) {:.external}.
299300
300301### CPU-only
301302
302303The following example uses the ` :devel ` image to build a CPU-only package from
303- the latest TensorFlow source code. See the [ Docker guide] ( ./docker.md ) for
304+ the latest TensorFlow source code. Check the [ Docker guide] ( ./docker.md ) for
304305available TensorFlow ` -devel ` tags.
305306
306- Download the latest development image and start a Docker container that we 'll
307+ Download the latest development image and start a Docker container that you 'll
307308use to build the * pip* package:
308309
309310<pre class =" prettyprint lang-bsh " >
@@ -368,7 +369,7 @@ On your host machine, the TensorFlow *pip* package is in the current directory
368369Docker is the easiest way to build GPU support for TensorFlow since the * host*
369370machine only requires the
370371[ NVIDIA®  ; driver] ( https://github.com/NVIDIA/nvidia-docker/wiki/Frequently-Asked-Questions#how-do-i-install-the-nvidia-driver ) {:.external}
371- (the * NVIDIA® CUDA® Toolkit* doesn't have to be installed). See the
372+ (the * NVIDIA® CUDA® Toolkit* doesn't have to be installed). Refer to the
372373[ GPU support guide] ( ./gpu.md ) and the TensorFlow [ Docker guide] ( ./docker.md ) to
373374set up [ nvidia-docker] ( https://github.com/NVIDIA/nvidia-docker ) {:.external}
374375(Linux only).
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